CLUSTER ANALYSIS OF MEDICAL TEXT DOCUMENTS BY USING SEMI-CLUSTERING APPROACH BASED ON GRAPH REPRESENTATION

Rafał Woźniak, Piotr Ożdżyński, Danuata Zakrzewska
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引用次数: 1

Abstract

The development of Internet resulted in an increasing number of online text re-positories. In many cases, documents are assigned to more than one class and automatic multi-label classification needs to be used. When the number of labels exceeds the number of the documents, effective label space dimension reduction may signifi-cantly improve classification accuracy, what is a major priority in the medical field. In the paper, we propose document clustering for label selection. We use semi-clustering method, by considering graph representation, where documents are represented by vertices and edge weights are calculated according to their mutual similarity. Assigning documents to semi-clusters helps in reducing number of labels, further used in multilabel classification process. The performance of the method is examined by experiments conducted on real medical datasets.
基于图表示的医学文本文档半聚类聚类分析
Internet的发展导致在线文本资源库的数量不断增加。在许多情况下,文档被分配到多个类,需要使用自动多标签分类。当标签数量超过文档数量时,有效的标签空间降维可以显著提高分类精度,这是医学领域的一个重要课题。在本文中,我们提出了用于标签选择的文档聚类。我们使用半聚类方法,通过考虑图表示,其中文档由顶点表示,并根据它们的相互相似性计算边缘权重。将文档分配到半聚类有助于减少标签数量,进一步用于多标签分类过程。在真实的医学数据集上进行了实验,验证了该方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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